Optimization Approach for Multiple DC Infeed Receiving-End Power Grid based on Complex Network Theory
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Affiliation:

1.State Key Laboratory of HVDC (Electric Power Research Institute, CSG);2.School of Electric Power Engineering, South China University of Technology

Fund Project:

State Key Laboratory of HVDC (SKLHVDC-2022-KF-01)

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    Abstract:

    The increasing load density and the higher proportion of external power feed-in continuously raise the level of short-circuit currents in the receiving-end transmission network, affecting the safe operation of the receiving-end grid. To address this issue, this paper proposes an optimization method for the receiving-end grid with multi-DC feed-in based on complex network theory. We investigate and propose an improved community detection algorithm based on complex network theory to search for critical interconnection lines in the receiving-end grid, forming a pre-disconnection line set. Targeting the improvement of short-circuit current level, the ratio of multiple feed-in short-circuit, and the active loss of the grid, we establish a multi-objective optimization model for the receiving-end grid framework. To enhance the accuracy of the model, we consider the impact of uncertainty in renewable energy output in the grid operation mode, utilizing non-parametric kernel density estimation and Frank-Copula function to generate scenarios of wind and solar output and cluster to obtain a set of typical scenarios. The NSGA-II algorithm is employed to solve the model, obtaining a Pareto optimal solution set, from which the optimal decision solution satisfying N-1 verification is selected. Finally, the effectiveness of the proposed method is validated through case studies.

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History
  • Received:June 03,2024
  • Revised:September 12,2024
  • Adopted:September 12,2024
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